John Evans News /aerospace/ en Advancing real-time data compression for supercomputer research /aerospace/advancing-real-time-data-compression-supercomputer-research <span>Advancing real-time data compression for supercomputer research</span> <span><span>Jeff Zehnder</span></span> <span><time datetime="2025-03-13T10:36:02-06:00" title="Thursday, March 13, 2025 - 10:36">Thu, 03/13/2025 - 10:36</time> </span> <div> <div class="imageMediaStyle focal_image_wide"> <img loading="lazy" src="/aerospace/sites/default/files/styles/focal_image_wide/public/2025-03/AdobeStock_430509391.jpeg?h=1731b01e&amp;itok=fej5Ri0a" width="1200" height="800" alt="Rack of servers."> </div> </div> <div role="contentinfo" class="container ucb-article-categories" itemprop="about"> <span class="visually-hidden">Categories:</span> <div class="ucb-article-category-icon" aria-hidden="true"> <i class="fa-solid fa-folder-open"></i> </div> <a href="/aerospace/taxonomy/term/154"> Aerospace Mechanics Research Center (AMReC) </a> </div> <div role="contentinfo" class="container ucb-article-tags" itemprop="keywords"> <span class="visually-hidden">Tags:</span> <div class="ucb-article-tag-icon" aria-hidden="true"> <i class="fa-solid fa-tags"></i> </div> <a href="/aerospace/taxonomy/term/381" hreflang="en">Alireza Doostan News</a> <a href="/aerospace/taxonomy/term/409" hreflang="en">John Evans News</a> <a href="/aerospace/taxonomy/term/383" hreflang="en">Ken Jansen News</a> </div> <a href="/aerospace/jeff-zehnder">Jeff Zehnder</a> <div class="ucb-article-content ucb-striped-content"> <div class="container"> <div class="paragraph paragraph--type--article-content paragraph--view-mode--default"> <div class="ucb-article-text" itemprop="articleBody"> <div> <div class="align-right image_style-small_500px_25_display_size_"> <div class="imageMediaStyle small_500px_25_display_size_"> <img loading="lazy" src="/aerospace/sites/default/files/styles/small_500px_25_display_size_/public/2025-03/quad2.jpg?itok=t7HNEAX1" width="375" height="375" alt="Alireza Doostan, Ken Jansen, John Evans, and Stephen Becker"> </div> <span class="media-image-caption"> <p>(Clockwise from top left) Alireza Doostan,&nbsp;<br>Ken Jansen, Stephen Becker, and John Evans.</p> </span> </div> <p><a href="/aerospace/alireza-doostan" data-entity-type="node" data-entity-uuid="db97469d-4a72-46fb-b360-00948197f640" data-entity-substitution="canonical" rel="nofollow" title="Alireza Doostan"><span>Alireza Doostan</span></a><span> is leading a major effort for real-time data compression for supercomputer research.</span></p><p><span>A professor in the Ann and H.J. Smead Department of Aerospace Engineering Sciences at the Vlogƽ, Doostan is the principal investigator on a&nbsp;</span><a href="https://pamspublic.science.energy.gov/WebPAMSExternal/Interface/Common/ViewPublicAbstract.aspx?rv=70cdd493-38ca-4b31-8e73-590a2c57e1b9&amp;rtc=24&amp;PRoleId=10" rel="nofollow"><span>$1.2 million Department of Energy project</span></a><span> to change how researchers handle the massive amounts of data that result from complex physics problems like modeling turbulence and aerodynamics for air and space craft.</span></p><p><span>Compressing data is nothing new when it comes to computing, but advances in high- performance systems are now creating so much data that it becomes impossible to store for later analysis.</span></p><p><span>“Computing power has increased drastically, but moving and storing that data is becoming a bottleneck. We have to reduce the size of the data generated through large scale simulation codes,” Doostan said.</span></p><p><span>While some scientific analysis of turbulence flows can be completed faster on ever larger high-performance computing platforms, much of the information must be discarded because the scope of the data is too vast to store, making it impossible to conduct later assessments.</span></p><p><span>“There is a lot of structure and physics embedded in the data that ideally needs to be preserved to study complex flow physics or develop faster models,” Doostan said.</span></p><p><span>The goal of the grant is to both maintain accuracy of modeling data while decreasing its complexity, and critically, allowing it to be stored by compressing it </span><em><span>in-situ</span></em><span>, or in real-time as it is created during modeling. This is not currently possible for large-scale models, as existing technology often requires some or the entire modeling simulation be completed before compression can begin.</span></p><p><span>Joining Doostan on the project is a team of CU Vlogƽ faculty, including </span><a href="/aerospace/kenneth-jansen" data-entity-type="node" data-entity-uuid="1cfda09c-af9a-4fcb-8bae-33a7963ed6e8" data-entity-substitution="canonical" rel="nofollow" title="Kenneth Jansen"><span>Ken Jansen</span></a><span> and </span><a href="/aerospace/john-evans" data-entity-type="node" data-entity-uuid="880276da-9c16-410b-a700-e71a45d5aa66" data-entity-substitution="canonical" rel="nofollow" title="John Evans"><span>John Evans,</span></a><span> both also from Smead Aerospace, and </span><a href="/amath/becker" rel="nofollow"><span>Stephen Becker</span></a><span> from applied math.</span></p><p><span>The team is focused on development of both traditional and deep neural models for massively parallel implementation of novel linear and non-linear dimensionality reduction techniques. It is a major undertaking, bringing together researchers with a broad range of backgrounds, including computational physics and sciences, discretization, machine learning, linear algebra, and statistics.</span></p><p><span>“This is a very interdisciplinary problem,” Doostan said. “This is not a problem one person can solve. You need a team.”</span></p><p><span>For Jansen, whose research focuses on turbulence modeling, an advance in compression could lead to significant progress across the spectrum of high-performance computing.</span></p><p><span>“This data compression research is critically important to provide access to the dynamics of our simulations,” Jansen said. “As simulations have passed petascale and are now exascale, it has become impractical to write the full solution fields to disk at a sufficient frequency and count, owing to the broad range of spatial and temporal scales of turbulence.”</span></p><p><span>The group has completed soon-to-be-published research showing strong promise for their approach. They are now working to scale up their algorithms to work at scale on supercomputing platforms like CU Vlogƽ’s&nbsp;</span><a href="/sharedinstrumentation/instruments-departmentinstitute/blanca-condo-cluster" rel="nofollow"><span>Blanca cluster</span></a><span> as well as Department of Energy systems.</span></p><p><span>“There is still a lot to be done, but our early work has shown success and only increases the computational load by less than five percent,” Doostan said.</span></p><p><span>The three-year award runs through fall 2027. Doostan is hopeful their final product will include publicly available next-generation compression software for general use by all simulation practitioners.</span></p></div> </div> </div> </div> </div> <div>Alireza Doostan is leading a major effort for real-time data compression for supercomputer research. Doostan is the principal investigator on a&nbsp;$1.2 million...</div> <h2> <div class="paragraph paragraph--type--ucb-related-articles-block paragraph--view-mode--default"> <div>Off</div> </div> </h2> <div>Traditional</div> <div>0</div> <div> <div class="imageMediaStyle large_image_style"> <img loading="lazy" src="/aerospace/sites/default/files/styles/large_image_style/public/2025-03/AdobeStock_430509391.jpeg?itok=Ffo4DOA7" width="1500" height="791" alt="Rack of servers."> </div> </div> <div>On</div> <div>White</div> Thu, 13 Mar 2025 16:36:02 +0000 Jeff Zehnder 5939 at /aerospace Seminar: Data-Driven Turbulence Modeling and Simulation - Oct. 4 /aerospace/2021/09/30/seminar-data-driven-turbulence-modeling-and-simulation-oct-4 <span>Seminar: Data-Driven Turbulence Modeling and Simulation - Oct. 4</span> <span><span>Anonymous (not verified)</span></span> <span><time datetime="2021-09-30T16:41:35-06:00" title="Thursday, September 30, 2021 - 16:41">Thu, 09/30/2021 - 16:41</time> </span> <div> <div class="imageMediaStyle focal_image_wide"> <img loading="lazy" src="/aerospace/sites/default/files/styles/focal_image_wide/public/article-thumbnail/evans_0.png?h=269ff223&amp;itok=Zwye_Uym" width="1200" height="800" alt="John Evans"> </div> </div> <div role="contentinfo" class="container ucb-article-categories" itemprop="about"> <span class="visually-hidden">Categories:</span> <div class="ucb-article-category-icon" aria-hidden="true"> <i class="fa-solid fa-folder-open"></i> </div> <a href="/aerospace/taxonomy/term/179"> Seminar </a> </div> <div role="contentinfo" class="container ucb-article-tags" itemprop="keywords"> <span class="visually-hidden">Tags:</span> <div class="ucb-article-tag-icon" aria-hidden="true"> <i class="fa-solid fa-tags"></i> </div> <a href="/aerospace/taxonomy/term/409" hreflang="en">John Evans News</a> </div> <div class="ucb-article-content ucb-striped-content"> <div class="container"> <div class="paragraph paragraph--type--article-content paragraph--view-mode--default"> <div class="ucb-article-content-media ucb-article-content-media-above"> <div> <div class="paragraph paragraph--type--media paragraph--view-mode--default"> <div> <div class="imageMediaStyle large_image_style"> <img loading="lazy" src="/aerospace/sites/default/files/styles/large_image_style/public/article-image/evans_0.png?itok=YKI9Av-h" width="1500" height="1957" alt="John Evans"> </div> </div> </div> </div> </div> <div class="ucb-article-text d-flex align-items-center" itemprop="articleBody"> <div><p class="lead text-align-center">John Evans<br> Assistant Professor, Smead Aerospace<br> Monday, Oct. 4 | 12:00 P.M. | Zoom Webinar</p> <p><strong>Abstract: </strong>Turbulent fluid flows are characterized by a wide spectrum of spatial and temporal scales.&nbsp; Unfortunately, the cost of resolving these scales with Direct Numerical Simulation (DNS) grows quickly with Reynolds number, so engineers will be unable to apply DNS to aerodynamic flows of industrial interest for many decades to come.&nbsp; Alternatively, one can model all scales using Reynolds Averaged Navier-Stokes (RANS) or just the smallest scales using Large Eddy Simulation (LES).&nbsp; RANS remains the turbulence modeling and simulation paradigm of choice in industry while LES continues to grow in popularity.&nbsp; However, state-of-the-art RANS and LES approaches are inaccurate for many aerodynamic flows of industrial interest, especially those exhibiting flow separation or transition to turbulence.</p> <p>In this talk, I will discuss our work toward arriving at improved RANS and LES approaches by leveraging advances in machine learning and the availability of high-fidelity simulation data for model training.&nbsp; The key to our approach is constructing model forms with embedded invariance properties.&nbsp; This enables us to train remarkably accurate, efficient, and generalizable RANS and LES models using sparse training data.&nbsp; Specifically, I will provide a high-level overview of our approach as well as illustrative numerical results.&nbsp; I will also highlight ongoing and future research directions including Hybrid RANS/LES modeling of separating turbulent boundary layers and in situ learning of turbulence closures from streaming simulation data.</p> <p><strong>Biography:</strong> John Evans is an Assistant Professor and the Jack Rominger Faculty Fellow in the Ann and H.J. Smead Department of Aerospace Engineering Sciences at the Vlogƽ.&nbsp; His research interests lie at the intersection of computational mechanics, geometry, and approximation theory, with current thrusts in isogeometric analysis, immersogeometric analysis, interactive simulation, and data-driven modeling.&nbsp; He has won a number of awards for his research and teaching including the 2021 Gallagher Young Investigator Award from the United States Association for Computational Mechanics and the 2021 AIAA Rocky Mountain Educator of the Year (College/University), and he is currently Associate Editor of the journal Engineering with Computers.</p></div> </div> </div> </div> </div> <h2> <div class="paragraph paragraph--type--ucb-related-articles-block paragraph--view-mode--default"> <div>Off</div> </div> </h2> <div>Traditional</div> <div>0</div> <div>On</div> <div>White</div> Thu, 30 Sep 2021 22:41:35 +0000 Anonymous 4661 at /aerospace Evans is AIAA Rocky Mountain Section Educator of the Year /aerospace/2021/08/02/evans-aiaa-rocky-mountain-section-educator-year <span>Evans is AIAA Rocky Mountain Section Educator of the Year</span> <span><span>Anonymous (not verified)</span></span> <span><time datetime="2021-08-02T11:56:10-06:00" title="Monday, August 2, 2021 - 11:56">Mon, 08/02/2021 - 11:56</time> </span> <div> <div class="imageMediaStyle focal_image_wide"> <img loading="lazy" src="/aerospace/sites/default/files/styles/focal_image_wide/public/article-thumbnail/john_evans_cropped.jpg?h=400c36b0&amp;itok=3DoIdvDO" width="1200" height="800" alt="John Evans"> </div> </div> <div role="contentinfo" class="container ucb-article-categories" itemprop="about"> <span class="visually-hidden">Categories:</span> <div class="ucb-article-category-icon" aria-hidden="true"> <i class="fa-solid fa-folder-open"></i> </div> <a href="/aerospace/taxonomy/term/154"> Aerospace Mechanics Research Center (AMReC) </a> </div> <div role="contentinfo" class="container ucb-article-tags" itemprop="keywords"> <span class="visually-hidden">Tags:</span> <div class="ucb-article-tag-icon" aria-hidden="true"> <i class="fa-solid fa-tags"></i> </div> <a href="/aerospace/taxonomy/term/409" hreflang="en">John Evans News</a> </div> <a href="/aerospace/jeff-zehnder">Jeff Zehnder</a> <div class="ucb-article-content ucb-striped-content"> <div class="container"> <div class="paragraph paragraph--type--article-content paragraph--view-mode--default"> <div class="ucb-article-content-media ucb-article-content-media-above"> <div> <div class="paragraph paragraph--type--media paragraph--view-mode--default"> <div> <div class="imageMediaStyle large_image_style"> <img loading="lazy" src="/aerospace/sites/default/files/styles/large_image_style/public/article-image/evans.png?itok=QlEtjlyx" width="1500" height="1957" alt="John Evans"> </div> </div> </div> </div> </div> <div class="ucb-article-text d-flex align-items-center" itemprop="articleBody"> <div><p><a href="/aerospace/node/396" rel="nofollow">John Evans</a> has been named 2021 Educator of the Year by the <a href="https://engage.aiaa.org/rockymountain/home" rel="nofollow">Rocky Mountain Section</a> of the American Institute of Aeronautics and Astronautics.</p> <p>Evans, an assistant professor and the&nbsp;Jack Rominger Faculty Fellow in the Ann and H.J. Smead Department of Aerospace Engineering Sciences, is an expert in fluid dynamics and fluid-structure interaction. He teaches courses on aerodynamics and finite elements modeling at the undergraduate and graduate level.</p> <p>He joined CU Vlogƽ as a faculty member in 2013.</p> <p>The AIAA RMS will recognize Evans and other 2021 award winners at a banquet at the Denver Museum of Nature and Science on August 13.</p> <p>Numerous CU Vlogƽ professors have been recognized by the AIAA RMS over the last decade. Previous recipients of the Educator of the Year Award include <a href="/aerospace/node/430" rel="nofollow">Hanspeter Schaub</a> in 2020, <a href="/aerospace/node/392" rel="nofollow">Alireza Doostan</a> in 2015, and <a href="/aerospace/node/412" rel="nofollow">Jean Koster</a> in 2011. In 2020, <a href="/aerospace/node/1594" rel="nofollow">Allie Anderson</a> was also recognized as their <a href="/aerospace/node/4099" rel="nofollow">Young Engineer of the Year.</a></p></div> </div> </div> </div> </div> <h2> <div class="paragraph paragraph--type--ucb-related-articles-block paragraph--view-mode--default"> <div>Off</div> </div> </h2> <div>Traditional</div> <div>0</div> <div>On</div> <div>White</div> Mon, 02 Aug 2021 17:56:10 +0000 Anonymous 4511 at /aerospace